Our new X account is live! Follow @wizwand_team for updates
WorkDL logo mark

MaskRange: A Mask-classification Model for Range-view based LiDAR Segmentation

About

Range-view based LiDAR segmentation methods are attractive for practical applications due to their direct inheritance from efficient 2D CNN architectures. In literature, most range-view based methods follow the per-pixel classification paradigm. Recently, in the image segmentation domain, another paradigm formulates segmentation as a mask-classification problem and has achieved remarkable performance. This raises an interesting question: can the mask-classification paradigm benefit the range-view based LiDAR segmentation and achieve better performance than the counterpart per-pixel paradigm? To answer this question, we propose a unified mask-classification model, MaskRange, for the range-view based LiDAR semantic and panoptic segmentation. Along with the new paradigm, we also propose a novel data augmentation method to deal with overfitting, context-reliance, and class-imbalance problems. Extensive experiments are conducted on the SemanticKITTI benchmark. Among all published range-view based methods, our MaskRange achieves state-of-the-art performance with $66.10$ mIoU on semantic segmentation and promising results with $53.10$ PQ on panoptic segmentation with high efficiency. Our code will be released.

Yi Gu, Yuming Huang, Chengzhong Xu, Hui Kong• 2022

Related benchmarks

TaskDatasetResultRank
LiDAR Semantic SegmentationSemanticKITTI (test)
mIoU66.1
125
Semantic segmentationSemanticKITTI (val)
mIoU66.1
117
LiDAR-based Panoptic SegmentationSemanticKITTI 1.0 (test)
PQ53.1
18
Showing 3 of 3 rows

Other info

Follow for update